Development and clinical validation of deep learning for auto-diagnosis of supraspinatus tears

Background Accurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level variability of the musculoskeletal radiologists and orthopedic surgeons. We developed a deep learning-based model for automatically diagnosing...

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Published inJournal of orthopaedic surgery and research Vol. 18; no. 1; pp. 426 - 12
Main Authors Guo, Deming, Liu, Xiaoning, Wang, Dawei, Tang, Xiongfeng, Qin, Yanguo
Format Journal Article
LanguageEnglish
Published London BioMed Central 13.06.2023
BioMed Central Ltd
BMC
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Online AccessGet full text
ISSN1749-799X
1749-799X
DOI10.1186/s13018-023-03909-z

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Abstract Background Accurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level variability of the musculoskeletal radiologists and orthopedic surgeons. We developed a deep learning-based model for automatically diagnosing supraspinatus tears (STs) using shoulder MRI and validated its feasibility in clinical practice. Materials and methods A total of 701 shoulder MRI data (2804 images) were retrospectively collected for model training and internal test. An additional 69 shoulder MRIs (276 images) were collected from patients who underwent shoulder arthroplasty and constituted the surgery test set for clinical validation. Two advanced convolutional neural networks (CNN) based on Xception were trained and optimized to detect STs. The diagnostic performance of the CNN was evaluated according to its sensitivity, specificity, precision, accuracy, and F1 score. Subgroup analyses were performed to verify its robustness, and we also compared the CNN’s performance with that of 4 radiologists and 4 orthopedic surgeons on the surgery and internal test sets. Results Optimal diagnostic performance was achieved on the 2D model, from which F1-scores of 0.824 and 0.75, and areas under the ROC curves of 0.921 (95% confidence interval, 0.841–1.000) and 0.882 (0.817–0.947) were observed on the surgery and internal test sets. For the subgroup analysis, the 2D CNN model demonstrated a sensitivity of 0.33–1.000 and 0.625–1.000 for different degrees of tears on the surgery and internal test sets, and there was no significant performance difference between 1.5 and 3.0 T data. Compared with eight clinicians, the 2D CNN model exhibited better diagnostic performance than the junior clinicians and was equivalent to senior clinicians. Conclusions The proposed 2D CNN model realized the adequate and efficient automatic diagnoses of STs, which achieved a comparable performance of junior musculoskeletal radiologists and orthopedic surgeons. It might be conducive to assisting poor-experienced radiologists, especially in community scenarios lacking consulting experts.
AbstractList Accurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level variability of the musculoskeletal radiologists and orthopedic surgeons. We developed a deep learning-based model for automatically diagnosing supraspinatus tears (STs) using shoulder MRI and validated its feasibility in clinical practice.BACKGROUNDAccurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level variability of the musculoskeletal radiologists and orthopedic surgeons. We developed a deep learning-based model for automatically diagnosing supraspinatus tears (STs) using shoulder MRI and validated its feasibility in clinical practice.A total of 701 shoulder MRI data (2804 images) were retrospectively collected for model training and internal test. An additional 69 shoulder MRIs (276 images) were collected from patients who underwent shoulder arthroplasty and constituted the surgery test set for clinical validation. Two advanced convolutional neural networks (CNN) based on Xception were trained and optimized to detect STs. The diagnostic performance of the CNN was evaluated according to its sensitivity, specificity, precision, accuracy, and F1 score. Subgroup analyses were performed to verify its robustness, and we also compared the CNN's performance with that of 4 radiologists and 4 orthopedic surgeons on the surgery and internal test sets.MATERIALS AND METHODSA total of 701 shoulder MRI data (2804 images) were retrospectively collected for model training and internal test. An additional 69 shoulder MRIs (276 images) were collected from patients who underwent shoulder arthroplasty and constituted the surgery test set for clinical validation. Two advanced convolutional neural networks (CNN) based on Xception were trained and optimized to detect STs. The diagnostic performance of the CNN was evaluated according to its sensitivity, specificity, precision, accuracy, and F1 score. Subgroup analyses were performed to verify its robustness, and we also compared the CNN's performance with that of 4 radiologists and 4 orthopedic surgeons on the surgery and internal test sets.Optimal diagnostic performance was achieved on the 2D model, from which F1-scores of 0.824 and 0.75, and areas under the ROC curves of 0.921 (95% confidence interval, 0.841-1.000) and 0.882 (0.817-0.947) were observed on the surgery and internal test sets. For the subgroup analysis, the 2D CNN model demonstrated a sensitivity of 0.33-1.000 and 0.625-1.000 for different degrees of tears on the surgery and internal test sets, and there was no significant performance difference between 1.5 and 3.0 T data. Compared with eight clinicians, the 2D CNN model exhibited better diagnostic performance than the junior clinicians and was equivalent to senior clinicians.RESULTSOptimal diagnostic performance was achieved on the 2D model, from which F1-scores of 0.824 and 0.75, and areas under the ROC curves of 0.921 (95% confidence interval, 0.841-1.000) and 0.882 (0.817-0.947) were observed on the surgery and internal test sets. For the subgroup analysis, the 2D CNN model demonstrated a sensitivity of 0.33-1.000 and 0.625-1.000 for different degrees of tears on the surgery and internal test sets, and there was no significant performance difference between 1.5 and 3.0 T data. Compared with eight clinicians, the 2D CNN model exhibited better diagnostic performance than the junior clinicians and was equivalent to senior clinicians.The proposed 2D CNN model realized the adequate and efficient automatic diagnoses of STs, which achieved a comparable performance of junior musculoskeletal radiologists and orthopedic surgeons. It might be conducive to assisting poor-experienced radiologists, especially in community scenarios lacking consulting experts.CONCLUSIONSThe proposed 2D CNN model realized the adequate and efficient automatic diagnoses of STs, which achieved a comparable performance of junior musculoskeletal radiologists and orthopedic surgeons. It might be conducive to assisting poor-experienced radiologists, especially in community scenarios lacking consulting experts.
Background Accurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level variability of the musculoskeletal radiologists and orthopedic surgeons. We developed a deep learning-based model for automatically diagnosing supraspinatus tears (STs) using shoulder MRI and validated its feasibility in clinical practice. Materials and methods A total of 701 shoulder MRI data (2804 images) were retrospectively collected for model training and internal test. An additional 69 shoulder MRIs (276 images) were collected from patients who underwent shoulder arthroplasty and constituted the surgery test set for clinical validation. Two advanced convolutional neural networks (CNN) based on Xception were trained and optimized to detect STs. The diagnostic performance of the CNN was evaluated according to its sensitivity, specificity, precision, accuracy, and F1 score. Subgroup analyses were performed to verify its robustness, and we also compared the CNN's performance with that of 4 radiologists and 4 orthopedic surgeons on the surgery and internal test sets. Results Optimal diagnostic performance was achieved on the 2D model, from which F1-scores of 0.824 and 0.75, and areas under the ROC curves of 0.921 (95% confidence interval, 0.841-1.000) and 0.882 (0.817-0.947) were observed on the surgery and internal test sets. For the subgroup analysis, the 2D CNN model demonstrated a sensitivity of 0.33-1.000 and 0.625-1.000 for different degrees of tears on the surgery and internal test sets, and there was no significant performance difference between 1.5 and 3.0 T data. Compared with eight clinicians, the 2D CNN model exhibited better diagnostic performance than the junior clinicians and was equivalent to senior clinicians. Conclusions The proposed 2D CNN model realized the adequate and efficient automatic diagnoses of STs, which achieved a comparable performance of junior musculoskeletal radiologists and orthopedic surgeons. It might be conducive to assisting poor-experienced radiologists, especially in community scenarios lacking consulting experts. Keywords: Supraspinatus tears, Convolutional neural network, Two-dimensional model, Diagnostic performance and efficiency
Accurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level variability of the musculoskeletal radiologists and orthopedic surgeons. We developed a deep learning-based model for automatically diagnosing supraspinatus tears (STs) using shoulder MRI and validated its feasibility in clinical practice. A total of 701 shoulder MRI data (2804 images) were retrospectively collected for model training and internal test. An additional 69 shoulder MRIs (276 images) were collected from patients who underwent shoulder arthroplasty and constituted the surgery test set for clinical validation. Two advanced convolutional neural networks (CNN) based on Xception were trained and optimized to detect STs. The diagnostic performance of the CNN was evaluated according to its sensitivity, specificity, precision, accuracy, and F1 score. Subgroup analyses were performed to verify its robustness, and we also compared the CNN's performance with that of 4 radiologists and 4 orthopedic surgeons on the surgery and internal test sets. Optimal diagnostic performance was achieved on the 2D model, from which F1-scores of 0.824 and 0.75, and areas under the ROC curves of 0.921 (95% confidence interval, 0.841-1.000) and 0.882 (0.817-0.947) were observed on the surgery and internal test sets. For the subgroup analysis, the 2D CNN model demonstrated a sensitivity of 0.33-1.000 and 0.625-1.000 for different degrees of tears on the surgery and internal test sets, and there was no significant performance difference between 1.5 and 3.0 T data. Compared with eight clinicians, the 2D CNN model exhibited better diagnostic performance than the junior clinicians and was equivalent to senior clinicians. The proposed 2D CNN model realized the adequate and efficient automatic diagnoses of STs, which achieved a comparable performance of junior musculoskeletal radiologists and orthopedic surgeons. It might be conducive to assisting poor-experienced radiologists, especially in community scenarios lacking consulting experts.
Accurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level variability of the musculoskeletal radiologists and orthopedic surgeons. We developed a deep learning-based model for automatically diagnosing supraspinatus tears (STs) using shoulder MRI and validated its feasibility in clinical practice. A total of 701 shoulder MRI data (2804 images) were retrospectively collected for model training and internal test. An additional 69 shoulder MRIs (276 images) were collected from patients who underwent shoulder arthroplasty and constituted the surgery test set for clinical validation. Two advanced convolutional neural networks (CNN) based on Xception were trained and optimized to detect STs. The diagnostic performance of the CNN was evaluated according to its sensitivity, specificity, precision, accuracy, and F1 score. Subgroup analyses were performed to verify its robustness, and we also compared the CNN's performance with that of 4 radiologists and 4 orthopedic surgeons on the surgery and internal test sets. Optimal diagnostic performance was achieved on the 2D model, from which F1-scores of 0.824 and 0.75, and areas under the ROC curves of 0.921 (95% confidence interval, 0.841-1.000) and 0.882 (0.817-0.947) were observed on the surgery and internal test sets. For the subgroup analysis, the 2D CNN model demonstrated a sensitivity of 0.33-1.000 and 0.625-1.000 for different degrees of tears on the surgery and internal test sets, and there was no significant performance difference between 1.5 and 3.0 T data. Compared with eight clinicians, the 2D CNN model exhibited better diagnostic performance than the junior clinicians and was equivalent to senior clinicians. The proposed 2D CNN model realized the adequate and efficient automatic diagnoses of STs, which achieved a comparable performance of junior musculoskeletal radiologists and orthopedic surgeons. It might be conducive to assisting poor-experienced radiologists, especially in community scenarios lacking consulting experts.
Abstract Background Accurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level variability of the musculoskeletal radiologists and orthopedic surgeons. We developed a deep learning-based model for automatically diagnosing supraspinatus tears (STs) using shoulder MRI and validated its feasibility in clinical practice. Materials and methods A total of 701 shoulder MRI data (2804 images) were retrospectively collected for model training and internal test. An additional 69 shoulder MRIs (276 images) were collected from patients who underwent shoulder arthroplasty and constituted the surgery test set for clinical validation. Two advanced convolutional neural networks (CNN) based on Xception were trained and optimized to detect STs. The diagnostic performance of the CNN was evaluated according to its sensitivity, specificity, precision, accuracy, and F1 score. Subgroup analyses were performed to verify its robustness, and we also compared the CNN’s performance with that of 4 radiologists and 4 orthopedic surgeons on the surgery and internal test sets. Results Optimal diagnostic performance was achieved on the 2D model, from which F1-scores of 0.824 and 0.75, and areas under the ROC curves of 0.921 (95% confidence interval, 0.841–1.000) and 0.882 (0.817–0.947) were observed on the surgery and internal test sets. For the subgroup analysis, the 2D CNN model demonstrated a sensitivity of 0.33–1.000 and 0.625–1.000 for different degrees of tears on the surgery and internal test sets, and there was no significant performance difference between 1.5 and 3.0 T data. Compared with eight clinicians, the 2D CNN model exhibited better diagnostic performance than the junior clinicians and was equivalent to senior clinicians. Conclusions The proposed 2D CNN model realized the adequate and efficient automatic diagnoses of STs, which achieved a comparable performance of junior musculoskeletal radiologists and orthopedic surgeons. It might be conducive to assisting poor-experienced radiologists, especially in community scenarios lacking consulting experts.
BackgroundAccurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level variability of the musculoskeletal radiologists and orthopedic surgeons. We developed a deep learning-based model for automatically diagnosing supraspinatus tears (STs) using shoulder MRI and validated its feasibility in clinical practice.Materials and methodsA total of 701 shoulder MRI data (2804 images) were retrospectively collected for model training and internal test. An additional 69 shoulder MRIs (276 images) were collected from patients who underwent shoulder arthroplasty and constituted the surgery test set for clinical validation. Two advanced convolutional neural networks (CNN) based on Xception were trained and optimized to detect STs. The diagnostic performance of the CNN was evaluated according to its sensitivity, specificity, precision, accuracy, and F1 score. Subgroup analyses were performed to verify its robustness, and we also compared the CNN’s performance with that of 4 radiologists and 4 orthopedic surgeons on the surgery and internal test sets.ResultsOptimal diagnostic performance was achieved on the 2D model, from which F1-scores of 0.824 and 0.75, and areas under the ROC curves of 0.921 (95% confidence interval, 0.841–1.000) and 0.882 (0.817–0.947) were observed on the surgery and internal test sets. For the subgroup analysis, the 2D CNN model demonstrated a sensitivity of 0.33–1.000 and 0.625–1.000 for different degrees of tears on the surgery and internal test sets, and there was no significant performance difference between 1.5 and 3.0 T data. Compared with eight clinicians, the 2D CNN model exhibited better diagnostic performance than the junior clinicians and was equivalent to senior clinicians.ConclusionsThe proposed 2D CNN model realized the adequate and efficient automatic diagnoses of STs, which achieved a comparable performance of junior musculoskeletal radiologists and orthopedic surgeons. It might be conducive to assisting poor-experienced radiologists, especially in community scenarios lacking consulting experts.
Background Accurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level variability of the musculoskeletal radiologists and orthopedic surgeons. We developed a deep learning-based model for automatically diagnosing supraspinatus tears (STs) using shoulder MRI and validated its feasibility in clinical practice. Materials and methods A total of 701 shoulder MRI data (2804 images) were retrospectively collected for model training and internal test. An additional 69 shoulder MRIs (276 images) were collected from patients who underwent shoulder arthroplasty and constituted the surgery test set for clinical validation. Two advanced convolutional neural networks (CNN) based on Xception were trained and optimized to detect STs. The diagnostic performance of the CNN was evaluated according to its sensitivity, specificity, precision, accuracy, and F1 score. Subgroup analyses were performed to verify its robustness, and we also compared the CNN’s performance with that of 4 radiologists and 4 orthopedic surgeons on the surgery and internal test sets. Results Optimal diagnostic performance was achieved on the 2D model, from which F1-scores of 0.824 and 0.75, and areas under the ROC curves of 0.921 (95% confidence interval, 0.841–1.000) and 0.882 (0.817–0.947) were observed on the surgery and internal test sets. For the subgroup analysis, the 2D CNN model demonstrated a sensitivity of 0.33–1.000 and 0.625–1.000 for different degrees of tears on the surgery and internal test sets, and there was no significant performance difference between 1.5 and 3.0 T data. Compared with eight clinicians, the 2D CNN model exhibited better diagnostic performance than the junior clinicians and was equivalent to senior clinicians. Conclusions The proposed 2D CNN model realized the adequate and efficient automatic diagnoses of STs, which achieved a comparable performance of junior musculoskeletal radiologists and orthopedic surgeons. It might be conducive to assisting poor-experienced radiologists, especially in community scenarios lacking consulting experts.
ArticleNumber 426
Audience Academic
Author Wang, Dawei
Guo, Deming
Tang, Xiongfeng
Qin, Yanguo
Liu, Xiaoning
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BackLink https://www.ncbi.nlm.nih.gov/pubmed/37308995$$D View this record in MEDLINE/PubMed
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Cites_doi 10.1007/s00330-019-06639-1
10.1148/rg.264055087
10.1016/j.jse.2011.04.009
10.1016/j.mri.2011.12.008
10.1148/radiol.2019190201
10.1016/j.arthro.2018.07.031
10.1016/j.cmpb.2016.12.008
10.1148/ryai.2019180091
10.2106/JBJS.18.01373
10.1007/s00256-009-0811-x
10.1111/j.1525-1497.2006.00420.x
10.2106/00004623-200404000-00007
10.1038/s41598-020-72357-0
10.1007/s00256-022-04008-6
10.1148/radiol.2019190372
10.1371/journal.pmed.1002699
10.1097/MD.0000000000018500
10.1148/radiol.2019181718
10.1007/s003300050724
10.1016/j.jor.2013.01.008
10.1016/S0749-8063(97)90005-0
10.1148/radiol.2017162326
10.1148/radiol.2018172322
10.3109/17453674.2010.483993
10.1016/j.crad.2009.06.002
10.1097/CORR.0000000000000848
10.1109/CVPR.2017.195
10.1097/RLI.0000000000000951
10.3390/jcm12062369
10.1016/j.cmpb.2019.105063
10.1007/s00167-019-05419-0
10.2214/ajr.166.5.8615243
10.1007/s00167-010-1257-3
10.2106/00004623-200101000-00010
10.1097/MD.0000000000019579
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Issue 1
Keywords Diagnostic performance and efficiency
Supraspinatus tears
Two-dimensional model
Convolutional neural network
Language English
License 2023. The Author(s).
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References SA Teefey (3909_CR8) 2004; 86
R Singson (3909_CR25) 1996; 166
R Kijowski (3909_CR5) 2019; 291
N Bien (3909_CR16) 2018; 15
F Liu (3909_CR15) 2019; 1
Y Morag (3909_CR1) 2006; 26
3909_CR28
JY Kim (3909_CR23) 2019; 182
S Kim (3909_CR24) 2017; 140
J-S Yoo (3909_CR27) 2019; 27
TO Smith (3909_CR30) 2012; 30
MA Fischer (3909_CR33) 2006; 21
Y Kim (3909_CR22) 2020; 30
H El-Azab (3909_CR3) 2010; 18
P Lakhani (3909_CR11) 2017; 284
RH Cofield (3909_CR26) 2001; 83
K Mankad (3909_CR34) 2009; 64
JC Clark (3909_CR4) 2012; 21
AG Potty (3909_CR21) 2023; 12
DC Wnorowski (3909_CR32) 1997; 13
T Blanchard (3909_CR31) 1999; 9
S Moosmayer (3909_CR6) 2019; 101
S Derkatch (3909_CR14) 2019; 293
L-Q Zhou (3909_CR10) 2020; 294
H Minagawa (3909_CR2) 2013; 10
B Norman (3909_CR12) 2018; 288
CA Kwong (3909_CR7) 2019; 35
E Shim (3909_CR19) 2020; 10
S Moosmayer (3909_CR29) 2010; 81
Q Li (3909_CR17) 2019; 98
J Yao (3909_CR18) 2022; 51
F Liu (3909_CR35) 2020; 99
DJ Lin (3909_CR20) 2023; 58
JS Theodoropoulos (3909_CR9) 2010; 39
DWG Langerhuizen (3909_CR13) 2019; 477
References_xml – volume: 30
  start-page: 2843
  issue: 5
  year: 2020
  ident: 3909_CR22
  publication-title: Eur Radiol
  doi: 10.1007/s00330-019-06639-1
– volume: 26
  start-page: 1045
  issue: 4
  year: 2006
  ident: 3909_CR1
  publication-title: Radiographics
  doi: 10.1148/rg.264055087
– volume: 21
  start-page: 36
  issue: 1
  year: 2012
  ident: 3909_CR4
  publication-title: J Shoulder Elbow Surg
  doi: 10.1016/j.jse.2011.04.009
– volume: 30
  start-page: 336
  issue: 3
  year: 2012
  ident: 3909_CR30
  publication-title: Magn Reson Imaging
  doi: 10.1016/j.mri.2011.12.008
– volume: 293
  start-page: 405
  issue: 2
  year: 2019
  ident: 3909_CR14
  publication-title: Radiology
  doi: 10.1148/radiol.2019190201
– volume: 35
  start-page: 228
  issue: 1
  year: 2019
  ident: 3909_CR7
  publication-title: Arthrosc J Arthrosc Relat Surg
  doi: 10.1016/j.arthro.2018.07.031
– volume: 140
  start-page: 165
  year: 2017
  ident: 3909_CR24
  publication-title: Comput Methods Programs Biomed
  doi: 10.1016/j.cmpb.2016.12.008
– volume: 1
  start-page: 180091
  issue: 3
  year: 2019
  ident: 3909_CR15
  publication-title: Radiol Artif Intell
  doi: 10.1148/ryai.2019180091
– volume: 101
  start-page: 1050
  issue: 12
  year: 2019
  ident: 3909_CR6
  publication-title: J Bone Joint Surg Am
  doi: 10.2106/JBJS.18.01373
– volume: 39
  start-page: 661
  issue: 7
  year: 2010
  ident: 3909_CR9
  publication-title: Skeletal Radiol
  doi: 10.1007/s00256-009-0811-x
– volume: 21
  start-page: 419
  issue: 5
  year: 2006
  ident: 3909_CR33
  publication-title: J Gen Intern Med
  doi: 10.1111/j.1525-1497.2006.00420.x
– volume: 86
  start-page: 708
  issue: 4
  year: 2004
  ident: 3909_CR8
  publication-title: JBJS
  doi: 10.2106/00004623-200404000-00007
– volume: 10
  start-page: 15632
  issue: 1
  year: 2020
  ident: 3909_CR19
  publication-title: Sci Rep
  doi: 10.1038/s41598-020-72357-0
– volume: 51
  start-page: 1765
  issue: 9
  year: 2022
  ident: 3909_CR18
  publication-title: Skeletal Radiol
  doi: 10.1007/s00256-022-04008-6
– volume: 294
  start-page: 19
  issue: 1
  year: 2020
  ident: 3909_CR10
  publication-title: Radiology
  doi: 10.1148/radiol.2019190372
– volume: 15
  start-page: e1002699
  issue: 11
  year: 2018
  ident: 3909_CR16
  publication-title: PLoS Med
  doi: 10.1371/journal.pmed.1002699
– volume: 98
  start-page: e18500
  issue: 52
  year: 2019
  ident: 3909_CR17
  publication-title: Medicine (Baltimore)
  doi: 10.1097/MD.0000000000018500
– volume: 291
  start-page: 722
  issue: 3
  year: 2019
  ident: 3909_CR5
  publication-title: Radiology
  doi: 10.1148/radiol.2019181718
– volume: 9
  start-page: 638
  issue: 4
  year: 1999
  ident: 3909_CR31
  publication-title: Eur Radiol
  doi: 10.1007/s003300050724
– volume: 10
  start-page: 8
  issue: 1
  year: 2013
  ident: 3909_CR2
  publication-title: J Orthop
  doi: 10.1016/j.jor.2013.01.008
– volume: 13
  start-page: 710
  issue: 6
  year: 1997
  ident: 3909_CR32
  publication-title: Arthrosc J Arthrosc Relat Surg
  doi: 10.1016/S0749-8063(97)90005-0
– volume: 284
  start-page: 574
  issue: 2
  year: 2017
  ident: 3909_CR11
  publication-title: Radiology
  doi: 10.1148/radiol.2017162326
– volume: 288
  start-page: 177
  issue: 1
  year: 2018
  ident: 3909_CR12
  publication-title: Radiology
  doi: 10.1148/radiol.2018172322
– volume: 81
  start-page: 361
  issue: 3
  year: 2010
  ident: 3909_CR29
  publication-title: Acta Orthop
  doi: 10.3109/17453674.2010.483993
– volume: 64
  start-page: 988
  issue: 10
  year: 2009
  ident: 3909_CR34
  publication-title: Clin Radiol
  doi: 10.1016/j.crad.2009.06.002
– volume: 477
  start-page: 2482
  issue: 11
  year: 2019
  ident: 3909_CR13
  publication-title: Clin Orthop Relat Res
  doi: 10.1097/CORR.0000000000000848
– ident: 3909_CR28
  doi: 10.1109/CVPR.2017.195
– volume: 58
  start-page: 405
  issue: 6
  year: 2023
  ident: 3909_CR20
  publication-title: Invest Radiol
  doi: 10.1097/RLI.0000000000000951
– volume: 12
  start-page: 2369
  issue: 6
  year: 2023
  ident: 3909_CR21
  publication-title: J Clin Med
  doi: 10.3390/jcm12062369
– volume: 182
  start-page: 105063
  year: 2019
  ident: 3909_CR23
  publication-title: Comput Methods Programs Biomed
  doi: 10.1016/j.cmpb.2019.105063
– volume: 27
  start-page: 3871
  issue: 12
  year: 2019
  ident: 3909_CR27
  publication-title: Knee Surg Sports Traumatol Arthrosc
  doi: 10.1007/s00167-019-05419-0
– volume: 166
  start-page: 1061
  issue: 5
  year: 1996
  ident: 3909_CR25
  publication-title: AJR Am J Roentgenol
  doi: 10.2214/ajr.166.5.8615243
– volume: 18
  start-page: 1730
  issue: 12
  year: 2010
  ident: 3909_CR3
  publication-title: Knee Surg Sports Traumatol Arthrosc
  doi: 10.1007/s00167-010-1257-3
– volume: 83
  start-page: 71
  issue: 1
  year: 2001
  ident: 3909_CR26
  publication-title: JBJS
  doi: 10.2106/00004623-200101000-00010
– volume: 99
  start-page: e19579
  issue: 12
  year: 2020
  ident: 3909_CR35
  publication-title: Medicine
  doi: 10.1097/MD.0000000000019579
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Snippet Background Accurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level...
Accurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level variability...
Background Accurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level...
BackgroundAccurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the experience level...
Abstract Background Accurately diagnosing supraspinatus tears based on magnetic resonance imaging (MRI) is challenging and time-combusting due to the...
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SubjectTerms Arthroplasty
Artificial intelligence
Clinical medicine
Convolutional neural network
Deep Learning
Diagnostic imaging
Diagnostic performance and efficiency
Hospitals
Humans
Injuries
Magnetic resonance imaging
Medical imaging equipment
Medicine
Medicine & Public Health
Neural networks
Orthopedics
Research Article
Retrospective Studies
Rotator Cuff
Rotator Cuff Injuries
Shoulder
Supraspinatus tears
Surgeons
Surgery
Surgical Orthopedics
Two-dimensional model
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Title Development and clinical validation of deep learning for auto-diagnosis of supraspinatus tears
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